Exodus from the Pandemic: Measuring Demographic Resilience Of Cities Using Large-Scale Transaction Payment Data

27 Pages Posted: 9 Dec 2022

See all articles by Sichong Chen

Sichong Chen

Zhongnan University of Economics and Law

Ziyu Wang

Zhongnan University of Economics and Law

Yongbin Lv

Zhongnan University of Economics and Law

Multiple version iconThere are 2 versions of this paper

Abstract

Understanding the spatial and temporal evolution of migration flows as a consequence of disasters is essential to building effective public health and economic policies but challenging. We evaluate urban resilience in a demographic dimension to the COVID-19 pandemic using large-scale high-frequency transaction payment data by tracing the destination cities, volumes and types of spending flows for cardholders whose habitual residence is the city of Wuhan before the pandemic. Our estimates show a large decline in consumer spending due to migration from Wuhan to other domestic cities following the pandemic outbreak, accounting for approximately nine percent of the GDP in 2020. Thereafter, we employ a difference-in-difference strategy to test the gravity theory of migration by exploring the spatial and temporal evolution of demographic resilience. Our results show that both economic mass and distance matter for demographic resilience in Wuhan: migration to economically similar cities in neighboring provinces and eastern coastal areas dominate following the easing of the lockdown and are more likely to be permanent, while migration to higher-ranked and neighboring cities show significant resilience to support the consumption recovery. Our proposed measure of demographic resilience of cities could be utilized to inform public health and economic policy planning.

Keywords: COVID-19 pandemic, Demographic resilience, urban resilience, Migration outflows, Large-scale transaction payment data

Suggested Citation

Chen, Sichong and Wang, Ziyu and Lv, Yongbin, Exodus from the Pandemic: Measuring Demographic Resilience Of Cities Using Large-Scale Transaction Payment Data. Available at SSRN: https://ssrn.com/abstract=4289885 or http://dx.doi.org/10.2139/ssrn.4289885

Sichong Chen (Contact Author)

Zhongnan University of Economics and Law ( email )

182# Nanhu Avenue
East Lake High-tech Development Zone
Wuhan, 430073
China

Ziyu Wang

Zhongnan University of Economics and Law ( email )

182# Nanhu Avenue
East Lake High-tech Development Zone
Wuhan, 430073
China

Yongbin Lv

Zhongnan University of Economics and Law ( email )

182# Nanhu Avenue
East Lake High-tech Development Zone
Wuhan, 430073
China

0 References

    0 Citations

      Do you have a job opening that you would like to promote on SSRN?

      Paper statistics

      Downloads
      42
      Abstract Views
      273
      PlumX Metrics
      Plum Print visual indicator of research metrics
      • Usage
        • Abstract Views: 262
        • Downloads: 42
      • Captures
        • Readers: 1
      see details